Presence sensing

ABSTRACT

One embodiment may take the form of a method of operating a computing device in a reduced power state and collecting a first set of data from at least one sensor. Based on the first set of data, the computing device determines a probability that an object is within a threshold distance of the computing device and, if so, the device activates at least one secondary sensor to collect a second set of data. Based on the second set of data, the device determines if the object is a person. If it is a person, a position of the person relative to the computing device is determined and the computing device changes its state based on the position of the person. If the object is not a person, the computing device remains in a reduced power state.

CROSS-REFERENCE TO RELATED APPLICATIONS

The present application claims priority to U.S. Non-Provisional patent application Ser. No. 13/219,573, filed Aug. 26, 2011, and entitled, “Presence Sensing,” U.S. Provisional Patent Application No. 61/485,610, filed May 12, 2011, and entitled, “Presence Sensing,” and U.S. Provisional Patent Application No. 61/504,026, filed Jul. 1, 2011, and entitled, “Presence Sensing,” all of which are incorporated herein by reference in their entirety and for all purposes.

TECHNICAL FIELD

The present disclosure is generally related to devices having computing capabilities and, more particularly, devices and systems for sensing the presence of a user in local proximity to the device.

BACKGROUND

Many computing devices are equipped with power saving features/modes intended to reduce power consumption when a user is not using the devices. Often, these power saving features are implemented though timers that count down a set amount of time from when the user last provides an input to the device. For example, a particular device may be configured to enter a sleep mode, or other mode that consumes less power than a fully operational mode, when a user has not provided input for five minutes.

Occasionally, however, a device may enter the power saving features/modes while a user is still using the device. For example, the power saving features may be entered because the user failed to provide input within the time period set for the timer while reading content on the device, viewing a movie, or listening to music. Additionally, recovery from the power saving feature/mode may take time, may even require the user to enter credentials, and generally may be a nuisance to the user.

SUMMARY

One embodiment may take the form of a method of operating a computing device to provide presence based functionality. The method may include operating the computing device in a reduced power state and collecting a first set of data from a first sensor or a group of sensors. Based on the first set of data, the computing device determines a probability or likelihood that an object is proximately located to the device. Additionally or alternatively, the computing device may make a hard decision as to the proximity of an object, for example, it may determine if the object is within a threshold distance of the computing device and, if the object is within the threshold distance and/or is likely proximity located to the device, the device activates a secondary sensor to collect a second set of data. Based on the second set of data, the device determines if the object is a person. If the object is a person, the device determines a position of the person relative to the computing device and executes a change of state in the computing device based on the position of the person relative to the computing device. If the object is not a person, the computing device remains in a reduced power state.

Another embodiment may take the form of a method for determining if a user is in proximity of a computing device. The method includes capturing an image using an image sensor and computing at least one of the following from the captured image: a skin tone detection parameter, a face detection parameter, a body detection parameter and a movement detection parameter. The method also includes utilizing at least one of the skin tone detection parameter, face detection parameter and the movement detection parameter to make a determination as to whether a user is present and, if it is determined that a user is present, changing a state of the computing device.

In still another embodiment, a computing system is provided having a main processor and a presence sensor coupled to the main processor. The presence sensor includes an image sensor, and a processor coupled to the image sensor configured to process a captured image to determine if a user is present in the image. The image sensor may be configured to capture 3-D images, depth images, RGB images, grayscale images and/or so forth and one or more of the images may be used for a probability determination. Other inputs may also contribute information useful to the presence determination. For example, input devices such as a keyboard, mouse and/or microphone each may provide inputs useful to a presence probability determination. If the processor determines that a user is present in the image, an indication that a user has been determined to be present is sent from the processor to the main processor and the main processor changes a state of the computing system based on the indication.

While multiple embodiments are disclosed, still other embodiments of the present invention will become apparent to those skilled in the art from the following Detailed Description. As will be realized, the embodiments are capable of modifications in various aspects, all without departing from the spirit and scope of the embodiments. Accordingly, the drawings and detailed description are to be regarded as illustrative in nature and not restrictive.

BRIEF DESCRIPTION OF THE DRAWINGS

FIG. 1 illustrates an example computing device having user presence sensing capabilities.

FIG. 2 is a block diagram of the computing device of FIG. 1.

FIG. 3 is a plot showing presence sensing-results when an object of interest is located at different distances from presence sensor.

FIG. 4 is another plot showing presence sensing results when the object of interest is offset an angle from the sensor.

FIG. 5 is a flowchart illustrating an example method for operating a tiered presence sensor system.

FIG. 6 is a flowchart illustrating a method for determining presence of a user.

FIG. 7 is a flowchart illustrating skin tone detection routine for use in presence sensing.

FIG. 8 is a flowchart illustrating a face recognition routine for use in presence sensing.

FIG. 9 is a flowchart illustrating a motion detection routine for use in presence sensing.

FIG. 10 illustrates frames being divided into window for single frame motion detection.

FIG. 11 is a flowchart illustrating an example method for single frame motion detection.

FIG. 12 is a flowchart illustrating an example method for multiple concurrent asynchronous sensors being used to determine a probability of a user being proximately located to a device.

DETAILED DESCRIPTION

Generally, the embodiments discussed herein are directed to user presence determination and computing device functionality related thereto. It should be appreciated that a user's experience interacting with computing devices equipped with such functionality may be improved. Further, in some embodiments, power saving and/or power efficiency may be realized through implementation of the embodiments discussed herein. As used herein, “user” may generally refer to a person or persons. However, in some embodiments the system may be configured to sense object other than a person and change state based on the presence of the object.

One embodiment may take the form of a computing device that is configured to sense the presence and/or absence of a user and provide an operating state based on the presence and/or absence of the user. In other embodiments, the computing device may calculate and provide a likelihood or probability score of the user being present or not present. In some embodiments multiple parameters may be determined, weighted, and used in conjunction in making a presence determination. This weighted detection can be used for more informed higher level decision making algorithms, or when fusing data from different sensors.

For example, in some embodiments, the computing device may be configured to determine when a user arrives or enters into proximity with the computing device and/or a probability that the user is present based on sensor input. With the probability calculation, false positives and/or false negatives may be reduced. Bayesian optimal thresholds may be implemented that achieve desired performance. That is, the triggering thresholds may be set in a manner to achieve a desired balance between an acceptable number of false positives relative to an acceptable number of false negatives. In response to a positive determination that the user is present or upon achieving a threshold probability that the user is present, the device may power up, exit a sleep mode, and/or provide some feedback to the user.

Generally, one goal of the presence sensing system may be to more intelligently use technology. For example, in some embodiments, a system awake may be initiated when it is determined that a user is approaching. The system awake may include a reduced set of routines so that the system is in an operational mode faster than with a conventional power up sequence. For example, the system may power up within a half second rather than six to eight seconds due to the reduced set of routines. In some embodiments, the computing device may be configured to determine when a user moves away from the device or leaves the proximity of the device. In response, the device may enter a power saving mode, such as a display sleep mode, a system sleep mode, activation of a screen saver, and so forth. Further, the system may exit the sleep mode partially in order to speed up the computer wake up time based on sensing the presence of a user. In still other embodiments, displayed content may be based on a user's relative position. For example, if a user is close to a device the device may provide product details, whereas the device may not display anything when a user is distant.

In some embodiments, the device may also be configured to track the user movements (e.g., position and velocity) and, in response to certain movements, provide feedback and/or enter or change a state of operation. For example, movement toward the device may activate more features, such as providing more options/menus in a user interface, whereas movement away from the device may reduce the number of features available to a user, such as reducing the number of menus/options and/or reducing or increasing the size of the options displayed. Additionally or alternatively, the display may zoom in or zoom out based on movement towards or away from the device. In some embodiments, a lateral movement of the user (e.g., from left to right) may cause a change in a background and/or a screen saver image displayed on the device. Still further, the changing of the image may correspond generally with the sensed motion. For example, the movement from left to right may cause the image to be replaced in a left to right motion with another image. Alternatively, as a user moves from left to right, leaves or drapes may reflect the movement. That is, the leaves may be blown and tumble from left to right, or the drapes may sway in a manner corresponding to the detected movement.

Moreover, in some embodiments, the presence of the user may be used together with the position of the user relative to the device to provide certain functionality. In some embodiments, input and/or output may be based on the position. For example, the device may be configured to provide audio stereo panning (e.g., audio steering) directed to the user's position. Additionally, in some embodiments, microphone steering may be implemented based on the user's position.

Further, a plurality of sensors and/or operational states may be implemented in a tiered manner. That is, in a first operational mode a first sensor may be operational. Detection of movement or user presence may result in the activation of a second sensor, and so forth. In some embodiments, the activation of the second sensor may be concurrent with the device entering a second operational mode, while in other embodiments, a second operation mode may not be entered into until a determination is made based upon data retrieved from the second sensor alone or in combination with the data from the first sensor.

The presence determination may be made by data collected by one or more sensors. In one embodiment, data from one or more sensor is used to determine if a user is present. For example, a neural net, support vector machine or other suitable classifier or probabilistic determiner may be implemented. In some instances a large set of data points may be collected, classified and stored for using in the presence determination. Furthermore, subsequently acquired data may be added and used for future determinations.

Turning to the drawings and referring initially to FIG. 1, a computing device 100 is illustrated. The computing device 100 may generally include one or more sensors 102 that may be utilized for presence sensing. For example, one or more cameras and/or light sensors may be used in the presence sensing. Although cameras and light sensors will be generally discussed herein with respect to the presence sensing, it should be appreciated that other sensor types may be implemented as well, such as ultrasonic sensors, microwave RADAR, and so forth. Some of these technologies may be utilized to determine physiological parameters when a human is in proximity to the device. For example, RADAR may be used to detect and/or locate a heartbeat in the room. Moreover, various techniques and wavelengths of light may be implemented. For example, proximity may be determined using depth sensors. Some example depth sensor techniques may include: focusing and defocusing, active IR reflected power, active IR structured light; active IR time of flight (2D+depth), active IR time of flight (single pixel sensor), passive IR (motion detector), passive IR thermal imaging (2D), stereo vision, polarization techniques, and so forth. In some embodiments, active IR may user multiple specific IR wavelengths to detect certain unique material properties, such as reflectivity of human skin or carbon dioxide emissions in breath. As such, the particular embodiments described herein are merely presented as examples and are not limiting.

FIG. 2 is a block diagram of the computing device 100 of FIG. 1. Generally, the computing device includes a microprocessor/microcontroller 104 to which other components (e.g., sensors). The microprocessor/microcontroller 104 may be implemented as one or more low power microcontrollers and as a point of data fusion for the data coming from sensors (e.g., camera, proximity, and so forth) as well as for the high-level user present or not-present decision making. In some embodiments, the user presence determination and data related thereto may be externalized and isolated from the main operation of the device. That is, the user presence system provides security and privacy by isolating the presence sensing data from the main computer processing unit (CPU) 105, the operating system, and so forth.

A variety of suitable sensors may provide input/data to the microprocessor/microcontroller 104. Specifically, a camera based sensor 106 may be communicatively coupled with the microprocessor 104. Any suitable camera based sensor may be implemented and a variety of different techniques may be utilized. For example, camera sensors available from ST Microelectronics may be used. The camera based sensor may include a full image camera 108 that provides face detection capabilities with an integrated processor 110. That is, the sensor may have an embedded microprocessor 110 and may be capable of estimating face position and distance. Additionally, the sensor may be used for determining distances of objects. The camera 108 also provides a windowed histogram information from the AGC system, which may be useful for motion detection.

Further, the camera 108 may have a horizontal field of view up to or greater than 120 degrees and a vertical field of view up to or greater than 120 degrees. In some embodiments lenses such as fish eye lenses may be used to achieve field of views having angle greater than 120 degrees. In one embodiment the horizontal field of view may be between 75-95 degrees (e.g., approximately 85 degrees) and the vertical field of view may be between 40-80 degrees (e.g., approximately 60 degrees). Faces may be detected at distances up to 20 feet or more. In one embodiment, faces may be detected at approximately 6-14 feet. Face position data may be available at between approximately 0.6-1 Hz and AGC data may be available at the full frame rate, approximately 10-30 Hz.

Generally, the images captured by the camera based sensor 106 and related raw information may not be available outside of the camera based sensor. Rather, information as to whether a face is detected within the functional range of the sensor, the position of the face and/or movement of the face within that range may be provided. In some embodiments, the camera sensor may provide a binary output indicating that a user is or is not present. Additionally, if a user is present, the position of the user relative to the device may be output by the camera based sensor, for example in x-y coordinates. Moreover, the sensor may be configured to indicate the number of faces that are present (e.g., indicate the number of people present), among other things.

In some embodiments, the camera based sensor 106 may be implemented independent of other sensors to achieve desired operational characteristics for a device. In some embodiments, the camera based sensor may be configured to operate and provide output in a tiered manner. For example, in a first state the camera based sensor may sense for user presence. If a user is present, then it may enter a second state and determine how many people are present. Subsequently, or concurrently, it may determine the location of the people who are present. As the camera moves from a state of operation, it provides an output which may be used by the device to change the state of the device, as will be discussed in greater detail below.

Some embodiments may use a main camera 103 to capture images. The main camera 103 may be a system camera used for video and still image capture by the user of the device. In some embodiments, the main camera may be separate and distinct from the camera used for presence sensing (e.g., there are multiple cameras in the system), while in other embodiments the main camera output may be used by the camera based sensor in lieu of the camera based sensor 106 having a dedicated camera. For example, in some embodiments, a depth based camera may be implemented in addition to the main camera. The depth based camera may take any suitable form. In one embodiment, the main camera output may be provided to an image processor 107 for use by a user as well as to a micro-controller of the camera based sensor 106 for user presence detection. There may be different options on how the image processor and user-detect co-processor communicate and make the data from the main camera available to a user. For example, when a user is not present the output from the main camera may primarily be processed by the micro-controller for the presence sensing determination. In this state, the data from the camera may generally not be made available to other components of the system. When a user is present, the output from the main camera may be provided to the image processor 107. However for the image data/information to be available, the user may be required to access a camera based application (e.g., video chat application, image capture program, or the like). Otherwise, the image data from the camera may not generally be accessible.

It should be appreciated that there may be many different configurations that allow for the desired presence sensing using one or more cameras as well as the conventional camera and image processing functionality. For example, in one embodiment, the main camera output may be routed to a single chip that combines the normal image processing functions and user presence detection functions. In other embodiments, the video output from the camera may be streamed to a host for processing by a central processing unit.

A second sensor, such as a proximity sensor 112, may also be connected to the microprocessor 104. In some embodiments, a controller 114, a multiplexer 116 and an array of light emitting diodes 118 may be operated in conjunction with the proximity sensor 112. In particular, the controller 114 may be configured to control the operation of the multiplexer 116 and the LEDs 118 in a time division multiplexed (TDM) manner. A suitable filter may be implemented to obtain a desirable response with the TDM alternating of the LEDs. In other embodiments, a mechanical device (e.g., micro electrical-mechanical device) may be used to multiplex one or more LEDs to cover discrete fields of view.

The LEDs 118 may operate in any suitable range of wavelengths and, in one example, may operate in the near infrared region of the electromagnetic spectrum. Each of the LEDs (LED1-LEDN) may be directed to a particular field of view. In some embodiments, each LED 118 may be directed to a discrete field of view, while in other embodiments the field of view of adjacent LEDs may overlap. In some embodiments, the array of LEDs 118 may distribute the LEDs about a bezel of the computing device. In other embodiments, the LED array 118 may be configured in a row (e.g., across a curved portion of a display screen bezel) with the LEDs directionally positioned to cover different field of view.

In one embodiment, an average value of the field of views (e.g., value indicating proximity) may be obtained and used to determine whether an object is in proximity with the device 100. If the average value exceeds a threshold value, it may indicate that an object is within proximity of the device 100. With the use of the array of LEDs 118, the proximity sensor may be able to more accurately detect proximity over a broad field of view. As each LED is directed to discrete field of view, the position of an object may also be determined using the proximity sensor 112. As such, in other embodiments, a change in the proximity value from a presumed empty scene may be determined. A largest change (or some rank) may be looked at across the various sensors and this value may be compared with a threshold to determine proximity and/or location.

In some embodiments, the camera based sensor 106 and the proximity sensor 112 may be utilized in conjunction with the microprocessor 104 to make a determination as to whether a user is in proximity of the computing device 100. A tiered sensing system may be implemented to provide power savings, to improve a user experience or provide a particular desired user experience, among other purposes and/or functions. In particular, the tiered sensing system may include operating a first sensor to initially determine the presence of a user within a threshold distance of the computing device to provide power savings. In some embodiments, the threshold distance may be within 2-10 feet (e.g., five feet) of the device 100. Additionally, in some embodiments, data collected from the first sensor may be used to determine a relative position of the user.

In the tiered system, if a user is present, a second sensor may be activated. Data from the second sensor, alone or in combination with data from the first sensor, may be used to further identify the user/person and/or the position of the user. The data from both the first and second sensors may be used together to make determinations as to what functions to perform and or what the user is doing. For example, it may be determined how close the user is to the device; if the user is facing the device, if the user is moving away/toward the device; and so forth. Further the data may be used to identify the user (e.g., as a credentialed user).

A state of the computing device 100 may change based on the determination that a user is present. For example, if the user is approaching the device, the display may awake, the system may awake, and so forth. If the user is moving left to right, a displayed image may change and may generally move corresponding to the movement of the user. Further, if multiple users are present (as determined based on discerning the presence of multiple faces), the device 100 may be powered to a secure state and may require entry of user credentials to fully access the device.

The presence determination may be based on multiple factors that are utilized in a neural network, support vector machine (SVM) or other machine learning based classifier or probabilistic decision system. For example, skin tone/color, presence and movement can be utilized in a weighted manner with a neural net to make a presence determination. As discussed above, based on the presence determination, the device 100 may enter/change operational states.

It should be appreciated that the selection of a particular sensor for use will be dependant upon a wide variety of factors, including functionality desired and power consumption limitations, for example. As such, in some embodiments, the camera based sensor 106 may be implemented as a first tier sensor, while in other embodiments; a proximity sensor 112 may be used as a first tier sensor. A more detailed description for implementing a proximity sensor such as the proximity sensor 112 is provided below.

The sensor 112 may chop light at some suitable frequency and measure the phase shift of the returned reflected light signal. The LED 118 outputs may be square waves or other waveforms, and the sensor 112 uses an I/Q demodulation scheme. The light arriving from the sensor 112 is mixed with a sine wave and a cosine wave, giving and I (in-phase) component and a Q (quadrature) component. The sine/cosine waves are synchronized with the LED modulation. These are the ‘raw’ outputs from the sensors, if there is a different internal method for measurement, it may be converted to this scheme. Without loss of generality it may be assumed a period of 2π, and that the integration takes place over that period. In practice, a fixed period may be used and will be integrating over some large multiple of the period. These differences result in a fixed scale factor, which may be ignored. The basic measured components are: s(t) Input signal to sensor i(t)=sin(t)·s(t) q(t)=cos(t)·s(t) I=∫ ₀ ² ·πi(t)dt Q=∫ ₀ ^(2·π) q(t)dt

If measuring an object at constant (radial) distance from the sensor 112 that takes up the entire field of view, a square wave input signal of the same frequency with phase offset φ and magnitude A, results in I and Q components: I=M·∫ _(ϕ) ^(π+ϕ)·sin(t)dt I=M·(−cos(π+ϕ)+cos(ϕ)) I=2·M·cos(ϕ) And: Q=M·∫ _(ϕ) ^(π+ϕ)·cos(t)dt Q=M·(sin(π+ϕ)−sin(ϕ)) Q=−2·M·sin(ϕ) The value φ may then be found as:

$\phi = {{\arctan\left( \frac{- Q}{I} \right)}.}$ Then M may be reconstructed as: 2·M=√{square root over (I ² +Q ²)}

Supposing there are two objects (A and B) in the sensor's field of view, each of which is at a constant distance, the phase shifts associated with these distances may be denoted as φ and ψ. The magnitude of the reflected signals may be defined to be A and B. The incoming light signals are additive in this case and so is integration, so I is: I=A·∫ _(ϕ) ^(π+ϕ)sin(t)dt+B·∫ _(ψ) ^(π+ψ)sin(t)dt I=2·(A·cos(ϕ)+B·cos(ψ))

Similarly for Q: Q=A·∫ _(ϕ) ^(π+ϕ)cos(t)dt+B·∫ _(ψ) ^(π+ψ)cos(t)dt Q=−2·(A·sin(ϕ)+B·sin(ψ))

Light sources whose intensity does not vary with time will give zero contribution to the I and Q components. This property provides good ambient light rejection. It also provides cancellation due to phase offset from objects at different distances. Using a one/zero square wave demodulation, this information may be retained but with worse ambient light rejection. This demodulation scheme would lead to slightly different math, but the end results would be similar. For the following, the factor of two in front of I/Q will be dropped as it gets absorbed in the other scale factors.

A few simplifications may be made and a basic model is proposed for the sensor output as a function of objects in the scene. The discrete case will be developed since it is more amenable to implementation, although other cases may be implemented as well. The LED/Sensor field of view may be partitioned into N sections indexed from 1 to N. Each of these sections has a solid angle of Ω_(i). Further, each of these solid angles has a fixed reflectance ρ_(i), and is at a fixed radial distance r_(i). Also, the output from the LED is constant across a given solid angle with emitted intensity per steradian I_(i). The phase shift for a given distance is defined φ(r_(i)).

From this model, the (I_(i),Q_(i)) contribution from a given solid angle at the sensor may be obtained. It is useful to also define a polar coordinate system in I/Q space. The magnitude of the IQ vector is defined to be M_(i), and the angle, φ_(i), is already defined.

$M_{i} = \frac{l_{i} \cdot \cdot \Omega_{i} \cdot \rho_{i}}{r_{i}^{2}}$ I_(i) = ⋅M_(i) ⋅ cos (ϕ(r_(i))) Q_(i) = −⋅M_(i) ⋅ sin (ϕ(r_(i)))

Both (I_(m),Q_(m)) may be defined as the measured (raw) I and Q values. One more term (I_(c),Q_(c)) may be added to represent any constant crosstalk (electrical or optical). Finally:

$I_{m} = {I_{c} + {\sum\limits_{i = {1\ldots\mspace{11mu} N}}I_{i}}}$ $Q_{m} = {Q_{c} + {\sum\limits_{i = {1\ldots\mspace{11mu} N}}Q_{i\;}}}$

Generally, to determine if a user is proximately located to a device it may be beneficial to understand the environment in which the device is located. This may help reduce false positives and more accurately determine when a user enters or exits the proximity of the device 100. However, creating a background model poses a number of challenges due to the relative lack of information provided by the sensor 112. In order to define a useful model some simplifying assumptions may be made. Initially, the mathematics of the model for a single sensor will be addressed followed by the multiple sensors case.

Fundamentally, there are two types of objects that affect the distance measurement provided by certain proximity sensors, such as sensor 112. There are those objects which can not be occluded by the person, and there those are objects which can be occluded by the person. The former will be referred to as ‘foreground’ objects and the latter as ‘background’ objects. Of course, an object could fall into both categories depending on how it is positioned relative to the person. For now, the scene may be divided into these two types of objects. Generally, the challenge is measuring the distance to the dynamic objects in the scene, such as people entering and leaving. In order to measure these objects successfully, an accurate model for the static objects in the scene is created and their relation to the dynamic object modeled.

Initially, (I_(p),Q_(p)) are defined to be the signal associated with the object that is being measured. The (I_(m),Q_(m)) and (I_(c),Q_(c)) may continue to be used as the measured (raw) and the crosstalk values, respectively.

Empty Scene

One model assumes there are no foreground or background objects, and that all of the signal is due to the person in the scene. In its purest form, the factory calibration/crosstalk values may be used: I _(p) =I _(m) −I _(c) Q _(p) =Q _(m) −Q _(c)

This model is may be used to produce a distance output. For scenes that have no foreground objects, this model will always over-estimate the distance. Note that this model depends on factory calibration values to be accurate over the lifetime of the device. It may not account for crosstalk added due to smudge/etc.

Once a static offset is observed, it is modeled as some combination of foreground and background objects. The choice of how to distribute this static offset strongly affects the estimate of I_(p) and Q_(p).

Foreground Only

One way to account for the static offset is to assume it is all due to foreground objects. Effects such as crosstalk changes due to temperature or smudge fall into this category. Foreground objects, by definition, have a constant contribution to the signal regardless of the presence of a person. In the pure foreground model, the spatial distribution of the foreground objects is not relevant—anything that is not foreground is assumed to be the object of interest. Define (I_(fg),Q_(fg)) to be the signal from the foreground. This model implies: I _(p) =I _(m) −I _(fg) −I _(c) Q _(p) =Q _(m) −Q _(fg) −Q _(c)

Note that (I_(fg)+I_(c),Q_(fg)+Q_(c)) is the measured sensor reading with no objects of interest in the scene. This is the standard ‘baseline subtraction’ model.

Uniform Background with Partial Occlusion

For this model, it is assumed that the background is at a uniform distance and has uniform reflectivity. It is further assumed that objects vertically cover the field of view. The LED falloff with angle is defined as I(θ). A single object of fixed width w is assumed to correspond to an angular section Δθ_(p) at a fixed position. The center position of the object is defined in angular terms as θ_(p).

The general model is discussed above. For this model, area is purely a function of width, incident light is defined by I(θ), and distance/reflectance are constant but unknown.

For convenience, define:

${L_{total} = {\int_{- \infty}^{\infty}{l(\theta)}}},{{L\left( {\theta_{p},{\Delta\;\theta_{p}}} \right)} = \frac{\int_{\theta_{p} - \frac{\Delta\;\theta_{p}}{2}}^{\theta_{p} + \frac{\Delta\;\theta_{p}}{2}}{l(\theta)}}{L_{total}}},{and}$ R(θ_(p), Δ θ_(p)) = 1 − L(θ_(p), Δθ_(p)). L(θ_(p);Δθ_(p)) represents the fraction of light from the LED that is directed at the solid angle defined by the object of interest, L_(total) represents the total light output, and R(θ_(p);Δθ_(p)) represents the fraction of total light cast on the background.

The magnitude of light reaching the sensor from our object of interest is proportional to L(θ_(p);Δθ_(p)). Well define the constant of proportionality to be θ_(p) and the phase offset associated with the distance to our object of interest to be φ_(p). This gives: I _(p)−ρ_(p) ·L(θ_(p),Δθ_(p))cos(ϕ_(p)), Q _(p)=−ρ_(p) ·L(θ_(p),Δθ_(p))sin(ϕ_(p)).

Similarly, the magnitude of light from the background reaching our sensor is proportional to R(θ_(p);Δθ_(p)). The constant of proportionality is defined to be ρ_(bg), and the phase associated with the background distance to be φ_(bg). This gives us: I _(bg)=ρ_(bg) ·R(θ_(p),Δθ_(p))·cos(ϕ_(bg)), Q _(bg)=−ρ_(bg) ·R(θ_(p),Δθ_(p))·sin(ϕ_(bg)). Upon summing: I _(m) =I _(p) +I _(bg) +I _(c), Q _(m) =Q _(p) +Q _(bg) +Q _(c). Assuming measurement of: I _(open)=ρ_(bg)·cos(ϕ_(bg))+I _(c), and Q _(open)=−ρ_(bg)·sin(ϕ_(bg))+Q _(c). If the angle θ_(p) and width w, are known or may be assumed, this system of equations may be solved. Uniform Background and Uniform Foreground with Partial Occlusion

For this model, start with the ‘Uniform Background with Partial Occlusion’ model, and build upon it, adding a foreground component that is uniform and has no spatially varying effect on the object of interest. Since the foreground components are not spatially varying, and are not affected by the presence of the object of interest, define ρ_(fg) and φ_(fg) to be the magnitude and phase of the foreground object. Now, for the foreground: I _(fg)=ρ_(fg)·cos(ϕ_(fg)), and Q _(fg)=−ρ_(fg)·sin(ϕ_(fg)).

This can simply add into the previous model to get: I _(m) =I _(p) +I _(bg) +I _(fg) +I _(c), and Q _(m) =Q _(p) +Q _(bg) +I _(fg) +Q _(c). Assuming that in the empty scene it can be measured: I _(open) =I _(bg) +I _(fg) +I _(c), and Q _(open) =Q _(bg) +I _(fg) +Q _(c). Two more variables may be added that are estimated as compared to the previous case. Sectioned Background, Uniform Foreground

This model partitions the horizontal field of view into a series of sections 1 . . . S, each of which is modeled as a uniform foreground/uniform background. A superscript s is added to denote the section to which a variable belongs. Starting with the background sections, assume that an object is in the scene with width w corresponding to an angular section Δθ_(p), and angular position θ_(p). Redefine the R function sectionally to represent the fraction of light cast on the background after occlusion by the object of interest. It may be referred to as R^(s).

Now define: I _(bg) ^(s)=ρ_(bg) ^(s) ·R ^(s)(θ_(p),Δθ_(p))·cos(ϕ_(bg) ^(s)), and Q _(bg) ^(s)=−ρ_(bg) ^(s) ·R ^(s)(θ_(p),Δθ_(p))·sin(ϕ_(bg) ^(s)).

Since the foreground signal is not changed by an object in the scene, there is no need to model it sectionally. However, the foreground may occlude the object of interest to varying degrees across sections. This could be modeled in a number of different ways, the cleanest of which would be to associate an ‘occlusion factor’ F^(s) for each foreground section. Also, L^(s) is defined as the fraction of total light output from the LED that illuminates the objects of interest in section s. Now:

${I_{p} = {{\rho_{p} \cdot {\cos\left( \phi_{p} \right)}}{\sum\limits_{s = {1\ldots\mspace{11mu} S}}{{L^{s}\left( {\theta_{p},{\Delta\;\theta_{p}}} \right)} \cdot F^{s}}}}},{and}$ $Q_{p} = {{{- \rho_{p}} \cdot {\sin\left( \phi_{p} \right)}}{\sum\limits_{s = {1\ldots\mspace{11mu} S}}{{L^{s}\left( {\theta_{p},{\Delta\;\theta_{p}}} \right)} \cdot F^{s}}}}$

In the uniform foreground case, Fs is equal to one for all sections and the equations collapse back down to the non-sectioned foreground case. In sum:

${I_{m} = {I_{p} + I_{fg} + I_{c} + {\sum\limits_{s = {1\ldots\mspace{11mu} S}}I_{bg}^{s}}}},{and}$ $Q_{m} = {Q_{p} + I_{fg} + Q_{c} + {\sum\limits_{s = {1\ldots\mspace{11mu} S}}{Q_{bg}^{s}.}}}$

Here, two variables are added per section for background, and one variable per section for the foreground occlusion. The occlusion effect from foreground objects may be ignored, and then only the extra background variables are added in.

Two Sensors with Overlapping Fields of View

Two sensors with an overlapping field of view may be used. Considering only the overlapping portion of the field of view and looking at what sorts of information can be gleaned in this region, assume that each sensor has its own L(θ_(p);Δθ_(p)), where θ_(p) is referenced to a global coordinate system. These may be referred to as L¹ and L², and use superscripts to denote the sensor. Further assume that the two sensors may differ in their sensitivity and LED output, and that this results in a scale factor error, a, for measurements of the same object in the overlapping field of view. Also assume a 1/d² relationship for distance and signal magnitude from the object of interest. Further assume that the object has a fixed reflectivity ρ_(p) and fixed width w.

Note that ρ_(p), φ_(p), θ_(p) and d are common values between the two sensor measurements, and are specific to the object of interest. There is a well defined relationship between d and φ_(p)—see the example section herein. Here, α is a constant sensitivity difference between the two sensors/LEDs, which should be slowly changing over the lifetime of the sensors. With these definitions:

${I_{p}^{1} = {{L^{1}\left( {\theta_{p},{\Delta\;\theta_{p}}} \right)} \cdot \rho_{p} \cdot \frac{1}{d^{2}} \cdot {\cos\left( \phi_{p} \right)}}},{Q_{p}^{1} = {{- {L^{1}\left( {\theta_{p,}\Delta\;\theta_{p}} \right)}} \cdot \rho_{p} \cdot \frac{1}{d^{2}} \cdot {\sin\left( \phi_{p} \right)}}},{I_{p}^{2} = {\alpha \cdot {L^{2}\left( {\theta_{p},{\Delta\;\theta_{p}}} \right)} \cdot \rho_{p} \cdot \frac{1}{d^{2}} \cdot {\cos\left( \phi_{p} \right)}}},{and}$ $I_{p}^{2} = {{- \alpha} \cdot {L^{2}\left( {\theta_{p},{\Delta\;\theta_{p}}} \right)} \cdot \rho_{p} \cdot \frac{1}{d^{2}} \cdot {{\sin\left( \phi_{p} \right)}.}}$

These equations may be substituted for Ip and Op into the background only partial occlusion model and generate equations for (I_(m) ¹,Q_(m) ¹) and (I_(m) ²,Q_(m) ²). There are five unknowns:

-   -   α     -   ρ_(p)     -   φ_(p)     -   θ_(p)     -   Δθ_(p)

Additionally, there are four equations, so as long as one of these values is known (or may be assumed), the remainder could potentially be calculated. It is reasonable to assume that a good initial guess at a, and Δθ_(p) may be made. Once another sensor, such as the camera based sensor 106, is provided, direct measurements for θ_(p) and φ_(p) may be obtained. Unfortunately these equations are non-linear, so some work may still be done to show that a unique solution exists within these constraints. To accomplish this estimation process, any of a number of estimation schemes may be utilized. Examples may include using an extended Kalman filter, sigma-point Kalman filter, or direct estimation.

Example Implementation of Background Only Partial Occlusion Model

The falloff cast by the 10 degree LED sensor 112 was imaged against a white wall. Its horizontally projected falloff is approximately gaussian with a standard deviation of roughly 12 degrees. The prototype was placed about 3.5 ft above the floor in a relatively dark, empty room with a backdrop at 12 ft.

The crosstalk was measured with a black felt baffle covering the sensor 112. The zero phase offset was measured with a reflective baffle. The nominal ‘open’ background was captured. Sensor data was collected with a person standing at 1 ft increments out from the sensor 112 at a 0 degree offset from the LED out to 10 ft. Sensor data was collected in 5 degree increments at a radial distance of 5 ft, from −15 degrees to +15 degrees. The felt measurements may be referred to as (I_(c);Q_(c)), as it essentially measures crosstalk. The reflective baffle measurements may be referred to as (I₀,Q₀) and the open measurements as (I_(open);Q_(open)). Finally, the raw measurements with the object of interest in the scene may be referred to as (I_(m);Q_(m)) and the to-be-estimated object of interest signal as (I_(p);Q_(p)). L(θ_(p);Δθ_(p)) was modeled assuming the Gaussian distribution mentioned above, whose specific form becomes:

${{L\left( {\theta_{p},{\Delta\theta}_{p}} \right)} = {0.5 \cdot \left( {{{erf}\left( {\frac{1}{12} \cdot \left( {\theta_{p} + \frac{\Delta\;\theta_{p}}{2}} \right)} \right)} - {{erf}\left( {\frac{1}{12} \cdot \left( {\theta_{p} - \frac{\Delta\;\theta_{p}}{2}} \right)} \right)}} \right)}};$ where “erf” is the error function. Also define:

$\begin{matrix} {\phi_{0} = {\arctan\left( \frac{- Q_{0}}{I_{0}} \right)}} \\ {\phi_{p} = {\arctan\left( \frac{- Q_{p}}{I_{p}} \right)}} \\ {{d_{p} = {\gamma \cdot \left( {\phi_{0} - \phi_{p}} \right)}},{and}} \\ {{{\Delta\;\theta_{p}} = {2 \cdot {\arctan\left( \frac{1}{d_{p}} \right)}}};} \end{matrix}$ where γ is the conversion from phase delta to distance, and Δθ_(p) is calculated assuming person with a width of 2 ft. Now the system of equations may be set up: I _(m) =I _(p)+(1.0−L(θ_(p),Δθ_(p)))·(I _(open) −I _(c))+I _(c), and Q _(m) =Q _(p)+(1.0−L(θ_(p),Δθ_(p)))·(Q _(open) −Q _(c))+Q _(c); where L(θ_(p);Δθ_(p)) is expressed using the above equations for Δθ_(p) and L(θ_(p);Δθ_(p)). Treat θ_(p) as a known value, and solve the system of non-linear equations numerically. Results with real data are shown in the plots of FIGS. 3 and 4. In FIG. 3, line 120 represents no correction and line 122 represents corrected data. In FIG. 4, line 130 represents no correction, line 132 represents corrected data, and line 134 represents true distance.

With the mathematics for a single sensor 112 with various background models, multiple sensors may be combined into an integrated position model. As mentioned above, multiple proximity sensors may be implemented in one embodiment. In other embodiments, multiple LEDs may be used in a TDM manner to provide a desired field of view. Integrating a camera based sensor should allow estimation all parameters of interest.

FIG. 5 illustrates a method 500 for utilizing multiple sensors in a tiered manner to change the state of the device. Initially, the device may be in a reduce power consumption mode such as a sleep mode, and a controller may receive data from a first sensor (Block 502). The received data is processed (Block 504) and compared with a threshold (Block 508). The comparison with the threshold allows for a determination as to whether the user is present or is likely present (Block 508). If the user is not present, data may continue to be received from the first sensor (Block 502). If however, the user is determined to be present or is likely to be present, a second sensor may be actuated (Block 510) and data is received from the second sensor (Block 512). The data from the second sensor is processed (Block 514) and combined with the data from the first sensor data (Block 516). The processing of data from the first and second sensor may include, but is not limited to, performing digital signal processing on the data such as filtering the data, scaling the data, and/or generally conditioning the data so that it is useful for presence determination. Additionally, the combination of data from the first and second sensors may include storing the data together and/or logically or mathematically combining the data.

The data from the first and second sensors is used to compute user presence values and/or probability of user presence scores (Block 518). The user presence values and/or probability of user presence scores are compared with thresholds to determine if a user is present (Block 522). Further, if the user is determined to be present, other parameters may be determined such as distance and location of the user relative to the device (Block 524) and the state of the device may be changed (Block 526). The state change may include bringing the device into an awake mode from a sleep mode or other suitable state change.

Additionally, it should be appreciated that the determination of other parameters (e.g., distance, location, and so forth) as well as the change in state of the device may occur after a positive determination of user presence based solely on the first sensor data as indicated by the dashed line from Block 508.

Further, the second determination of user presence (Block 520) may be more accurate than the first determination (Block 508) based on the additional information provided from the second sensor. Moreover, as mentioned above, additional parameters may be determined based on the combination of data from both the first and second sensors

It should be appreciated that the other embodiments may implement more or fewer steps than the method 500. FIGS. 6-11 illustrate more detailed flowcharts of methods for presence determinations.

Turning to FIG. 6, a flowchart 200 illustrating presence sensing is illustrated. Initially, a camera is used to obtain an image (Block 202). A light level determination may be made (Block 204) and provided to a skin tone detection routine (Block 206). Optionally, in some embodiments, the light level determination may be provided to other routines as well, as indicated by arrow 203. Additionally, the captured image may be pre-processed (Block 208). In some cases, the preprocessing may include down scaling of the image, changing the color space of the image and/or enhancing the image, for example. Other detector specific preprocessing may also be performed (Blocks 214, 215 and 217). For example, the image may optionally be blurred by preprocessing in Block 214 before being provided to the skin tone detection routine (Block 206). Additionally, preprocessing in Block 215 may include changing color into grayscale before providing the image to the face detection routine (Block 210) and/or performing edge detection in the preprocessing of Block 217 before providing the image to the movement detection routine (Block 212). The depth images may be pre-processed by segmenting them and segmented part may be provided as inputs to detectors. The skin tone detection routine, face detection routine and movement detection routine are discussed in greater detail below with reference to FIGS. 7-11.

The results of the skin tone detection routine, face detection routine and movement detection routine may be weighted and combined using fusion and detection logic (Block 216) and a user presence classification is determined (Block 218). The fusion and detection logic may include the use of neural networks, support vector machines, and/or some other form of probabilistic machine learning based algorithm to arrive at a determination of whether a user is present. FIG. 7 illustrates the skin tone detection routine (Block 206) as a flowchart starting with the low light determination (Block 204). It should be appreciated that the low light determination may be utilized in a variety of different manners to influence the processing of the image. For example, in some embodiments, the low light determination may be provided as a vector to a neural network, while in other embodiments the low light determination may be used to select a particular type of categorizer to be used. That is, if it is determined that the image was not taken in low light, feature vectors may be generated (Block 220), and a first pixel classifier is applied (Block 222). If the image was captured in low light, a different set of feature vectors may be generated (Block 224) and a second per pixel classifier may be applied (Block 226). The type of features, e.g., color conversion, and so forth may be selectively provided to achieve desired results and may be different depending on the low light determination. Additionally, the first and second per pixel classifiers may be different based on the low light determination. For example, the first classifier may be a 7-5-2 multilayer perceptron (MLP) feed forward neural network, per pixel classifier, while the second classifier may be a 2-12-2 MLP feed forward neural network per pixel classifier. In some embodiments, the classifiers may be implemented in an open kernel with a GPU to help speed up the process.

The output from the classifiers may be a probability (e.g., a value between 0 and 1) that indicates a probability that the image includes a skin tone. A morphology filter may optionally be applied to the image (Block 228) and an average grey scale level may be calculated (Block 230). Further, nonlinear scaling (Block 232), a temporal queue filter (Block 234) and a clamp (Block 236) may be applied before determining a probability of user presence due to skin tone detection (Block 238).

FIG. 8 illustrates the face detection routine (Block 210) as a flowchart starting with applying a face detector (Block 240). Any suitable face detector may be implemented, such as a Viola-Jones cascade face detector, for example, that provides a probabilistic score indicating the likelihood that a face is present. The face presence score is then scaled (Block 242) and an intermittent detection flicker filter optionally may be applied (Block 244) to smooth the image. It should be appreciated that in some embodiments, such as where the camera is of a relatively good quality, smoothing may be omitted from the process. The flicker filter may include a temporal queue filter (Block 246), determination as to whether the normalized score deviation from average is less than a threshold (Block 248) and then multiplying an output value with the scaled score (Block 250). A temporal queue filter (Block 252) and a clamp (Block 254) are applied before determining a probability of user presence due to face detection (Block 256). A body detector or body sensor may be configured to follow the same flow or a similar flow to that of the face detector. Moreover, the body detector may be implemented using an image sensor that has a lower resolution than that used for the face detector.

FIG. 9 illustrates the motion detection routine 212 as a flowchart starting by collecting multiple frames and, as such, memory may be implemented to store the multiple frames. For example, three frames may be utilized, a current frame and two other frames. In the embodiment illustrated in FIG. 9, a current frame and two subsequent frames are used. Initially, an input frames are delayed by k frames, sequentially, (Blocks 260, 262) and fed forward to be added (Block 264) with the output of the second delay (Block 262). The output of Block 260 is multiplied by 2 (Block 266) and a difference (Block 268) between the adder (Block 264) and the output of the multiplier (Block 266) is determined. A per pixel inner product is then determined (Block 270), scaled (block 272), and pixels are clamped (Block 274). An average gray level is calculated (Block 276), nonlinear scaling is performed (Block 278), temporal queue filter is applied (Block 280) and then clamped to [0,1] (Block 282). Finally, a probability of user presence due to movement is determined (Block 284).

Some parameters that may be useful in the motion detection routine may include an auto focus (AF) window statistics or horizontal edges or Sobel/Sharr edges, 2D color histogram data, component histogram data, automatic white balance/auto exposure (AWB/AE) window statistics of color content, and so forth. Some preprocessing steps may be implemented for the motion detection such as Y channel (intensity), gradient magnitude computed with either Sobel or Scharr filters (accumulating the gradient for proper normalization), threshold gradient magnitude (normalization by count of edge pixels), skin-probability in chrominance (Cr, Cb) space, sub-images of any of the foregoing, and so forth. In some embodiments, the motion detection may include the ability to compute image centroids. The distance from the centroid for the current frame to the centroid of the previous frame is used as a measure of the amount of motion, and a hard threshold is applied to produce a binary detection or motion. Hence, for example, a change in centroid location of either a Y′-intensity, edge gradient magnitude, binary edge, or skin probability image may indicate motion. Sensitivity and robustness tradeoffs may dictate a particular combination of parameters being used. For example, skin probability image may be used with edge-gradient and binary edges may be utilized to provide robustness to lighting changes. The skin probability may be performed with a neural network, as mentioned above or alternatively using an auto white balance color space filters to approximate this functionality.

Some embodiments for sensing motion may refer to window statistics of either skin detection or gradient images. One embodiment may look at a change in a global sum. In particular the image is summed over the entire frame to produce a scalar value s[i], where i is current frame index. A queue of the past N values is maintained: S={s[i−1], s[i−2], . . . s[i−N]}. SL,N is denoted as the sequence from s[i−L] to s[i−N], and the extremum of these values is computed as u=max(SL,N) and v=min(SL,N). The amount of motion is determined by the excursion outside of this range: e=max (s[i]−u, v−s[i]). Motion is detected if e exceeds a predetermined threshold.

In some embodiments, the motion detection routine may be implemented with a single frame and thus little or no memory may be used, as full frames will not be stored. In some embodiments, the image (a single frame) may be divided into windows for which statistics may be calculated. Changes in the statistics for the windows may be used to determine motion and also position of a user.

FIG. 10 illustrates possible sets of windows into which the images may be divided for single frame motion detection. Specifically, FIG. 10 shows single frames divided into both non-overlapping windows and concentric windows for statistical purposes. In each case, the luminance of the images (frames at the top of page) and intensity gradient magnitude of the images (frames at the bottom of the page) are considered. For example, an image 300 may be divided into multiple non-overlapping exposure statistics windows 302. Alternatively, the image 300 may be divided into multiple concentric overlapping exposure statistics windows 304. The statistics for each window may be determined based on a luminance image (as in image 300) or based on an intensity gradient magnitude image 306.

The use of the windows provided more robust capture of motion when computing sums of the gradient magnitude. With respect to the overlapping rectangular windows, one embodiment includes eight concentrically arranged rectangles, the largest contains the entire frame and the smallest is centered in the image. Thus, at frame i, the sum of the frames is s_(j)[i] for jϵ[1, 2, . . . 8]. The sums in the strips of pixels lying between the rectangles is computed as the difference of these sums: d_(j)[i]=s_(j)[i]−s_(j)+1[i]/h_(j), except for the special case d₈[i]=s₈[i]/h₈. The differences are normalized by the height of the strip h_(j), which is approximately proportional to its area.

Next, the extrema u, v, (maximum and minimum) of the differences d_(j) over the previous N frames is computed using queues, and the excursions e_(j)=max (d_(j)[i]−u, v−d_(j)[i]). Comparing each excursion e_(j) to a threshold gives an indicator of motion in region j of the frame. Subtle changes in lighting can produce false positive detections. True motion is usually associated with detection in two or three of the eight regions. Hence, in some embodiments, at least two regions detecting motion are required for a determination that motion has been detected in the frame. Additionally, large changes in lighting such as turning on or off the room lights, often results in many regions showing motion detection. Hence, detection may be suppressed if more than three regions have detected motion. These design parameters may be adjusted based on experience or to provide a desired level of sensitivity and robustness.

FIG. 11 is a flow chart illustrating the motion detection routine 2128 using a single frame 300 with non-concentric windows 302. In some embodiments, each statistics window may be provided with a unique analysis pipe. That is, each window may be concurrently processed. In other embodiments, one or more windows may be processed sequentially in a common analysis pipe. As used herein, “analysis pipe” may refer to the processing steps associated with the statistical analysis of the windows and may include the temporal queue filter.

As discussed above, the image 300 may be divided into statistical windows 302 and an average statistic may be calculated for each window (Block 310). A temporal queue filter may be applied to the average statistic (Block 312) and an excursion value “e” from short term past behavior may be calculated (Block 314). The excursion value may be compared with a threshold to determine if it exceed the threshold (Block 316) A normalized count is kept for each excursion value that exceeds the threshold (Block 318) and if the normalized count exceed a voting threshold (Block 320), it is determined that motion has been detected (Block 322). If it is determined that no motion has been detected, additional data may be collected from the second sensor(s). Additionally, after some determined amount of time lapses the device may return to a reduced power state and the first sensor(s) may collect data.

The excursion value may also be used to generate summary statistics (Block 324). The summary statistics may be nonlinearly scaled (Block 326) and a probabilistic motion score may be provided (Block 328). Generally, Block 322 will provide a binary one or a zero output indicating motion has been detected, whereas Block 328 will provide a value between zero and one indicating the likelihood that motion has been detected in the image 300.

As may be appreciated, a neural network, support vector machine (SVM) or other classification system may be utilized in each of the aforementioned routines to make a determination as to presence of a user. Additionally, a probability value of from each of the routines may be alone enough to make the determination that a user is present, for example, if a value is above a certain threshold. Moreover, in some embodiments a combination of the probabilities from each of the routines may be used in determining if a user is present. In some embodiments, the output of a routine may not be used as its validity may be questionable. For example, the skin tone detection routine may be unreliable due to the lighting. Moreover, the probabilities output from the routines may be combined in a weighted manner (e.g., one probability may be given more weight based on the likelihood of it being more accurate than the others).

Embodiments described herein may be implemented to reduce power consumption in computing devices, such as notebook computers, desktop computers, and so forth. In particular, the computing devices may provide presence sensing functionality even when the device is in a low power state, such as a hibernate or sleep state, so that the device may power up when a user is present and power down or enter a reduced power state when the user leaves. Further, the embodiments may be provided to improve a user experience with computing devices by providing intuitive powering up and powering down operation, as well as security features, among others.

A tiered system may be implemented that precludes the use of a main processor and RAM in low power operation. For example, in one embodiment, a lowest power state may implement only a camera, an image signal processing (ISP) device and an embedded processor that may calculate a presence value in real-time. In a next tier, a face detector chip and RAM may be turned on. In the subsequent tier, the system processor and other resources may be powered on.

In the examples described above for motion detection, therefore, memory of previous frames is limited to statistics computed by the ISP, and limited to the space available in the embedded processor registers and cache (e.g., 32 k), as RAM may not be available. Additionally, it should be appreciated, that the presence sensing information (e.g., statistics, images, and so forth) are not available outside of the presence sensing routines. That is, for example, an image captured for presence sensing may not be viewed by a user.

In some embodiments, a body detection parameter may be utilized. The body detection parameter may be similar to the face detection parameter but based on macro features of a human body rather than smaller features that may evidence a face. For example, the body detection parameter may be concerned with discerning arms, legs, a torso, a head, and so forth. As it is based on larger features, a lower resolution camera relative to those used for face detection may be implemented and achieve reasonably good results as a body sensor. Moreover, in some embodiments, a camera may operate in a low resolution mode when used to obtain a body detection parameter and may operate in a higher resolution mode when used for other purposes. Indeed, the same camera may be used for both the body detection and the face detection parameters. It should be appreciated that the body detection parameter may be used in the same manner as the face detection parameter to determine a probability of presence. Further, the body detection parameter may be a parameter indicative of a probability that a body has been detected. The data used for the body detector may be depth images, grayscale images, RGB images, or any one of the foregoing types of images alone or in combination with another type of image.

Many different sensors and inputs may be implemented in some embodiments. The multiple different sensors and inputs may help increase the accuracy and ability of the presence sensor to reduce false positives and false negatives. In one embodiment, a Bayesian filter may be implemented. Specifically, a recursive Bayesian estimate may be performed based on probabilistic data fusion. FIG. 12 is an example flowchart illustrating a method 350 using multiple concurrent asynchronous sensors to determine the probability of a user being present. Near the top of the flowchart are multiple sensors 352. Specifically, the sensors may include a video camera 354, a 3-D camera 356, a microphone 358, and a keyboard 360. It should be appreciated that this is merely an example and more or fewer, as well as different sensors may be utilized in an actual implementation. For example, a touch screen, a track pad and a mouse may each be utilized. Each of the sensors 352 may operate concurrently.

Each of the different sensors 352 may be configured to capture certain features. That is, each sensor has capabilities that provide some useful information into the presence determination. The combination of the sensor information provides a synergy of information such that the combination of the information is more useful and/or more accurate than the information from each sensor when used alone. Specifically, the data from the sensors 352 may be utilized to determine the actual position of a user in 3-D space and the velocity of the user in addition to determining a likelihood that the user is present. The obtained data is combined in a robust fashion to provide a synergy of the sensor information with a priori predictions of the motion model. The data fusion optimally fuses the model predictions with observed sensor data, weighing each component's contribution to the estimated state (position and velocity of user) proportional to the certainty (quality) of that information. Hence, if the motion model is accurate and the sensor data is noisy, then the model predictions may be weighted more heavily relative to the sensor data, and vice-versa. This combination of model and observed data is continuously adapted based on the evolving probabilities in the system (e.g., the weighting as calculated by the likelihood models are constantly updated).

Some example features that may be extracted from data provided by the sensors are provided in the flowchart. Specifically, the video camera 354 may extract features such as 3-D blobs, face & body detection, and motion vectors (Block 370). The 3-D blobs may represent an object within the field of view of the camera. The 3-D camera 356 may be configured to extract face detection, body detection and motion vectors as well (Block 372). The microphone 358 may be configured to extract audio acceleration and novelty detection (Block 374). The keyboard 360 may be configured to extract keypress detection (Block 376). The audio acceleration feature may utilize the dopier effect to determine if an object is approaching or retreating. Additionally, the novelty detection feature may seek to find changes in background noise that may indicate presence of a user. For example, an increase in sound volume may be indicative of a user's presence.

Once the features have been extracted, an observation likelihood is determined (Block 178). That is, each of the extracted features may be used to determine a likelihood of the object of interest (e.g., a user) being present. The observation likelihood is then used to update the state representation (Block 182). The state representation utilizes a fusion of data. A state representation (Block 184) may be generated. In one embodiment the state representation may take the form of a histogram. Other embodiments may include a Parametric Gaussian distribution (Kalman filter), a Monte-Carlo sample based distribution (sequential Monte-Carlo method/Particle Filter), a hybrid asynchronous multi-observation particle filter, and so forth. The state representation may present information related to the user presence calculation. For example, the state representation may present information related to 3-D position of user(s) and velocity of the user(s). A motion model (Block 188) may input information used in the state representation and may also receive information from the state representation. The motion model is a state evolution expression that models the user's movement. The state representation may be used in a statistics calculation (Block 186) that, among other things may determine a probability of the user's presence. Additionally, the statistics calculation may estimate a position of the user and a variance of the estimate.

The state representation also provides information to a measurement model (Block 180) and the measurement model may be provided to the observation likelihood determination (Block 178). The measurement model may generally scale the respective observations of the sensors. Specifically, as the relative observations of the sensors may be given more or less weight, a model may be applied to help give more weight to those observations that deserve more weight. For example, observation of a keypress may be given more weight than observation of a 3-D blob. Additionally, if the sensors are noisy, they may be given less weight. Each of the measurement models is used in the observation likelihood step which, in turn is used to update the state representation (Block 182).

Implementation of the presence sensing may provide increased intelligent behavior of computing devices. That is, the computing device may be able to better anticipate user interaction and may provide an improved user experience. For example, a display may not dim while a user is present but may shut off upon departure of the user. Additionally, a display output may be scaled and/or changed based on the distance of a user from the device. Other intuitive and experiential features such as leaves blowing across the screen to mimic sensed movement may add to an intelligent and interactive feel for users.

The foregoing describes some example embodiments for sensing the presence of user. Although the foregoing discussion has presented specific embodiments, persons skilled in the art will recognize that changes may be made in form and detail without departing from the spirit and scope of the embodiments. For example, modifications to one or more of the algorithms for presence sensing may be implemented. In one example, hardware limitations may drive the algorithm changes. Accordingly, the specific embodiments described herein should be understood as examples and not limiting the scope thereof. 

The invention claimed is:
 1. A method for determining whether a user is facing a computing device, the method comprising: capturing an initial image using an image sensor having a first resolution; computing, using a processor, a body detection parameter based on one or more macro features of a human body detected in the captured initial image, wherein the one or more macro features of a human body include at least one of an arm, a leg, a head, or a torso; utilizing the body detection parameter to determine a first observation likelihood that the user is facing the computing device; concurrent with capturing the initial image, capturing data from a second sensor; using the data captured by the second sensor to compute a second observation likelihood that the user is facing the computing device; using the first and the second observation likelihoods to determine a probability that the user is facing the computing device; when the determined probability that the user is facing the computing device exceeds a first threshold, updating a state representation maintained by the computing device; capturing one or more subsequent images with a camera having a second resolution higher than the first resolution of the image sensor; using the captured one or more subsequent images to determine a facial feature detection parameter and a movement detection parameter; and using the facial feature detection parameter and the movement detection parameter to update the probability that the user is facing the computing device; determining that the updated probability that the user is facing the computing device exceeds a second threshold; and further updating the state representation.
 2. The method of claim 1, wherein: the second sensor is a user input device; the data captured from the second sensor is a signal from the user input device; and the second observation likelihood is weighted more than the first observation likelihood in the determination of the probability that the user is facing the computing device.
 3. The method of claim 1, wherein the state representation includes information regarding a three-dimensional position of the user with respect to the computing device and a velocity of the user with respect to the computing device.
 4. A computing device comprising: an image sensor configured to capture image data at a first resolution; at least one input device configured to capture additional data; a processor coupled to the image sensor and to the at least one input device, the processor configured to: process the image data to determine a first observation likelihood that a user is facing the computing device by computing a body presence parameter based on one or more macro features of a human body detected in the image data, wherein the one or more macro features of a human body include at least one of an arm, a leg, a head or a torso; process the additional data to determine a second observation likelihood that the user is facing the computing device; generate a predicted state representation, wherein the predicted state representation comprises an estimate for a position of the user and an estimate for a velocity of the user; combine the predicted state representation and the first and the second observation likelihoods to determine a probability that the user is facing the computing device; and when the probability that the user is facing the computing device exceeds a first threshold, change a state of the computing device; capture additional image data with a camera having a second resolution higher than the first resolution; use the captured additional image data to determine a movement parameter and a facial feature detection parameter; update the probability that the user is facing the computing device using the body presence parameter, the movement parameter, and the facial feature detection parameter; determine that the updated probability that the user is facing the computing device exceeds a second threshold; and update the predicted state representation.
 5. The computing device of claim 4, wherein the at least one input device comprises at least one of: an additional image sensor; a keyboard; a touch screen; a trackpad; a microphone; or a mouse.
 6. The computing device of claim 5, wherein the image sensor and the at least one input device operate concurrently.
 7. The computing device of claim 4, wherein: the at least one input device comprises an additional image sensor; and at least one of the image sensor or the additional image sensor comprises a depth sensor.
 8. The computing device of claim 7, wherein the image sensor and the additional image sensor operate concurrently.
 9. The computing device of claim 4, wherein the change of state of the computing device comprises entering a warm-up state.
 10. The computing device of claim 4, wherein the change of state comprises disabling a screen dimming function of the computing device.
 11. The computing device of claim 4, wherein the movement parameter includes a velocity parameter.
 12. The computing device of claim 4, wherein generating the predicted state representation uses a motion model comprising a state evolution expression that models movement of the user.
 13. The computing device of claim 4, wherein the predicted state representation is updated using the probability that the user is facing the computing device.
 14. A method of operating a computing device to provide user focus based functionality, the method comprising: receiving 3-dimensional (3D) image data acquired by a 3D camera; using the 3D image data to extract a first feature from a set of macro body features related to a user in local proximity to the computing device, wherein the set of macro body features related to the user includes at least one of an arm, a leg, a torso or a head; concurrent with receiving the 3D image data, receiving sensor data from a second sensor; separate from the 3D camera; using the sensor data to extract a second feature from the set of macro body features related to the user being in local proximity to the computing device, the second feature being different from the first feature; receiving a state representation comprising information related to the user being in local proximity to the computing device, wherein the information includes an estimated position of the user in 3D space and an estimated velocity of the user; combining the state representation with a first observation likelihood based on the first feature and a second observation likelihood based on the second feature to: produce a probability of the user facing the computing device; and update the information in the state representation; and changing a state of the computing device based on the probability of the user facing the computing device.
 15. The method of claim 14, wherein: the second sensor comprises a video camera; the second sensor data comprises a frame of a video acquired by the video camera; and the second feature extracted from the frame comprises at least one of: a 3D blob; a face; a body; or a motion vector.
 16. The method of claim 14, wherein the state representation further comprises a measurement model that assigns a first weight to the first extracted feature and assigns a second weight to the second extracted feature.
 17. The method of claim 16, wherein the second weight is greater than the first weight when the first sensor data is noisier than the second sensor data.
 18. The method of claim 14, wherein the estimated position of the user in 3D space and the estimated velocity of the user are based on a motion model that uses a state evolution expression to model a motion of the user.
 19. The method of claim 14, further comprising updating the state representation using the first observation likelihood and the second observation likelihood.
 20. The method of claim 19, wherein updating the state representation includes updating the estimated position of the user and the estimated velocity of the user.
 21. The method of claim 19, wherein updating the state representation uses recursive Bayesian estimation.
 22. The method of claim 14, wherein when the probability of the user facing the computing device exceeds a first threshold, changing the state of the computing device comprises at least one of: changing a displayed screen saver image; transitioning a display to an awake state; transitioning the computing device to the awake state; reducing a number of processes when transitioning the computing device to the awake state; or maintaining the computing device in an active state by modifying at least one timeout.
 23. The method of claim 14, wherein when the probability of the user facing the computing device is less than a second threshold, changing the state of the computing device comprises at least one of: changing an output on a display screen; transitioning a display into a sleep mode; or transitioning the computing device to a sleep mode.
 24. The method of claim 3, wherein updating the probability that the user is facing the computing device uses a priori estimates for the three-dimensional position and the velocity of the user. 